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Analysis of Acoustic Cardiac Signals for Heart Rate Variability and Murmur Detection Using Nonnegative Matrix Factorization-Based Hierarchical Decomposition

机译:基于非负矩阵分解的分解分解的心率变异性和杂音检测声学心脏信号分析

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The detection of heart rate variability (HRV) via cardiac auscultation examination can be a useful and inexpensive tool which, however, is challenging in the presence of pathological signals and murmurs. The aim of this research is to analyze acoustic cardiac signals for HRV and murmur detection. A novel method based on hierarchical decomposition of the single channel mixture using various nonnegative matrix factorization techniques is proposed, which provides unsupervised clustering of the underlying component signals. HRV is determined over the recovered normal cardiac acoustic signals. This novel decomposition technique is compared against the state-of-the-art techniques, experiments are performed using real-world clinical data, which show the potential significance of the proposed technique.
机译:通过心脏发射检查的心率变异性(HRV)的检测可以是一种有用且廉价的工具,但是,在病理信号和杂音存在下挑战。 该研究的目的是分析用于HRV和杂音检测的声学心脏信号。 提出了一种基于使用各种非负矩阵分子分子化技术的单通道混合物的分层分解的新方法,其提供了底层分量信号的无监督聚类。 HRV通过恢复的正常心脏声信号确定。 将这种新颖的分解技术与最先进的技术进行了比较,使用现实世界临床数据进行实验,这表明了所提出的技术的潜在意义。

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